Deep Reinforcement Learning based Recommender System with State Representation

Author(s):  
Peng Jiang ◽  
Jiafeng Ma ◽  
Jianming Zhang
2021 ◽  
Vol 2021 ◽  
pp. 1-12
Author(s):  
Zhiruo Zhao ◽  
Xiliang Chen ◽  
Zhixiong Xu ◽  
Lei Cao

Recently, the application of deep reinforcement learning in the recommender system is flourishing and stands out by overcoming drawbacks of traditional methods and achieving high recommendation quality. The dynamics, long-term returns, and sparse data issues in the recommender system have been effectively solved. But the application of deep reinforcement learning brings problems of interpretability, overfitting, complex reward function design, and user cold start. This study proposed a tag-aware recommender system based on deep reinforcement learning without complex function design, taking advantage of tags to make up for the interpretability problems existing in the recommender system. Our experiment is carried out on the MovieLens dataset. The result shows that the DRL-based recommender system is superior than traditional algorithms in minimum error, and the application of tags have little effect on accuracy when making up for interpretability. In addition, the DRL-based recommender system has excellent performance on user cold start problems.


2021 ◽  
Author(s):  
An-Chi Chuang ◽  
Nen-Fu Huang ◽  
Jian-Wei Tzeng ◽  
Chia-An Lee ◽  
You-Xuan Huang ◽  
...  

2020 ◽  
Vol 7 (7) ◽  
pp. 6402-6413
Author(s):  
Peter Wei ◽  
Stephen Xia ◽  
Runfeng Chen ◽  
Jingyi Qian ◽  
Chong Li ◽  
...  

2021 ◽  
Vol 213 ◽  
pp. 106706
Author(s):  
Liwei Huang ◽  
Mingsheng Fu ◽  
Fan Li ◽  
Hong Qu ◽  
Yangjun Liu ◽  
...  

Author(s):  
Daochen Zha ◽  
Kwei-Herng Lai ◽  
Songyi Huang ◽  
Yuanpu Cao ◽  
Keerthana Reddy ◽  
...  

We present RLCard, a Python platform for reinforcement learning research and development in card games. RLCard supports various card environments and several baseline algorithms with unified easy-to-use interfaces, aiming at bridging reinforcement learning and imperfect information games. The platform provides flexible configurations of state representation, action encoding, and reward design. RLCard also supports visualizations for algorithm debugging. In this demo, we showcase two representative environments and their visualization results. We conclude this demo with challenges and research opportunities brought by RLCard. A video is available on YouTube.


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